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Introduction Proton decay in the simulation of LAr detector

Proton decay in LAr - Studies for the ICARUS detector Dorota Stefan Cracow Epiphany Conference on Physics in Underground Laboratories and Its Connection with LHC 08.01.2010. Introduction Proton decay in the simulation of LAr detector Track reconstruction in the ICARUS detector

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Introduction Proton decay in the simulation of LAr detector

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  1. Proton decay in LAr - Studies for the ICARUS detector Dorota Stefan Cracow Epiphany Conference on Physics in Underground Laboratories and Its Connection with LHC 08.01.2010 • Introduction • Proton decay in the simulation of LAr detector • Track reconstruction in the ICARUS detector • Particle identification in the ICARUS detector • Many thanks to coraborators: Robert Sulej, Paola Sala, Filippo Varanini, Silvia Muraro, Daniele Gibin

  2. Introduction • The experimental detection of proton decay would be a milestone in particle physics clarifyingof the fundamental laws of Nature • Grand Unification Theories (GUTs) predict that at extremely high energies (1015 – 1016 GeV) the electromagnetic, weak and strong interactions merge into a single unified force. • Proton decay is predicted by many Grand Unification models, e.g.: SU(5), SO(10), E6and their supersymmetric versions, which are named after the mathematical groups of symmetries that connect the forces.

  3. Limits of proton lifetime The predicted proton decay channels, their branching ratios and the proton lifetime are model dependent. The lower measured limits of the proton lifetime for the two particularly interesting decay channels are: PDG: (p → e+ 0) > 1.6 x 1033 ( (p → e+0) > 1.01 x 1034***) PDG:(p → K+) > 0.7(2.3*) x 1033 ( (p → K+) > 1.5 x 1033 **) The current best limits come from the SuperKamiokande experiment * hep-ex/0502026v1 **Doctor Thesis: Searches for proton decay with the Super-Kamiokande detector Scott T. Clark, PhD Thesis, Boston University, 2007 ***very preliminary – information from 25.11.2009; SK web page

  4. Future projects Detectors of a mass 105 – 106 tons, presented at this conference, aim at ten times higher lower limits of the proton lifetime.

  5. The ICARUS detector

  6. Examples of kaon decays in LAr m+ p+ Kaons come from the simulated proton decays. FLUKA K+ m+ K+ K+→ p0 p+ PDG: K+ → m+nm 63% K+ → p+p0 21% K+ → p0 e+ne 6% K+ → p+p+p- 6% m+ K+ K+→ m+ nm

  7. K+ µ+ e+ Kaon decay in Liquid Argon T600: Run 939 Event 46 The energy losses per unit length of Liquid Argon follow the theoretical calculation by Bethe and Bloch

  8. Simulations of proton decay inside nuclei 1. Description of nucleonstatesinsidenuclei. • Existing MC codesrely on the Fermi gas model (pF(r) = [3 2(r)]1/3) 2. Propagation of particlesfrom proton decaythroughnucleicouldlead to intranuclearcascades. The distribution of the K+ momentum coming from proton decay Density[fm-3] p → K+ n Radius[fm] K+ momentum [GeV]

  9. Distribution of total momentum of kaon and muon KAON MUON K+ momentum [GeV] m+ momentum [GeV] • 20000 events of proton decaygeneratedin FLUKA • 2% of kaonsareabsorbedinnuclei (K+ n → K0 p) • 63% of thesekaonsdecayintoμ+ nm • Only 5% out of these 63% of kaonsdecayinflight • 95% out of these 63% of kaonsdecayatrest - muonmomentumisequal 236 MeV

  10. Reconstruction of tracks in the ICARUS detector Hits and clustersreonst. algorithmsareverygood. Problemswiththenextsteps of tracksreconstruction: • one trackinstead of three independent tracks. • hitsare not sortedfromthebeginning to theend of track. Ifhitsareproperlysortedinbothviews – the 3D reconstructionisexcellent and theseperation of trackscould be based on dE/dx information. Collection view Induction view

  11. The sorting hits algorithm • Thesimplealgorithm of findingtheclosesthitsseems not to be thebestchoice. • More inteligent algorithm – Polygonal Line solvesthe problem. • Description of themethodwithexamplescould be foundhere: • http://www.iro.umontreal.ca/~kegl/research/pcurves/ The code was written according to recipe: B. Kégl, A. Krzyzak, T. Linder, and K. Zeger"Learning and design of principal curves"IEEE Transactions on Pattern Analysis and Machine Intelligencevol. 22, no. 3, pp. 281-297, 2000.

  12. 3D reconstructioninthe ICARUS detector Induction view Collection view Polygonal Line Algorithm Hits from two views are merged according to the same drift sample 3D

  13. Particle identification in the LAr detector The identification of particles is based on the fact that energy losses are different forparticles with different masses and the same value of momentum, especially for momenta lower than that corresponding to the minimum of ionization. • sortinghitsmakesidentification of particleseasier. • dedxisthehighestinthe point of stoppingparticle – ithelps to seperatetracks. Sdedx[MeV/cm] m+ drift K+ VERY PRELIMINARY Range [cm] wire

  14. Summary • Searches for proton decay are one of the most important subjects of particle physics nowadays. • In order to improve these searches it is essential to increase the sensitivity of measurements by at least a factor 10. • Both calorimetric and spacial resolution of a detector is important in order to look for proton decay. • Very good 3D track reconstruction of the LAr detector are required in order to fully use its potential.

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